利用在线新闻类别对社交媒体文本进行分类的有效性

Phat Jotikabukkana, Virach Sornlertlamvanich, Okumura Manabu, C. Haruechaiyasak
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引用次数: 5

摘要

社交媒体文本可以说明我们真实社会状况的重要信息。它可以显示实时社会运动的方向。然而,它有自己的特点,如使用短文本和非正式语言,大量的非结构化信息和暗语。这种文本很难分类,也很难分析,难以从中提取有用的信息。在本文中,我们提出了一种有效的技术,通过利用来自格式良好的数据源(如在线新闻)的初始关键字来对社交媒体文本进行分类。本文主要采用词频逆文档频率加权技术(TF-IDF)和词文章矩阵(WAM)作为研究方法。我们以从格式良好的信息源中提取的关键词为主要因素,对Twitter消息进行实验。我们发现一组社交媒体关键词可以代表社会事件的本质,并且可以用来对文本进行有效的分类。
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Effectiveness of social media text classification by utilizing the online news category
Social media text can illustrate significant information of our real social situation. It can show the direction of real-time social movement. However, it has its own characteristics such as using short text and informal language, many unstructured information and argot. This kind of text is hard to classify and difficult to analyze to extract the useful information. In this paper, we propose an effective technique to classify the social media text by utilizing the initial keywords from well-formed sources of data, such as online news. Term frequency-inverse document frequency weighting technique (TF-IDF) and Word Article Matrix (WAM) are used as main methods in this research. We use the extracted keywords from the well-formed source as a main factor to do experiment on Twitter messages. We found a set of the social media keywords can represent the essence of social events and can be used to classify the text effectively.
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